Abstract Modeling human motor control and predicting how humans will move in novel environments is a grand scientific challenge. Researchers in the fields of biomechanics and motor control have proposed and evaluated motor control models via neuromechanical simulations, which produce physically correct motions of a musculoskeletal model. Typically, researchers have developed control models that encode physiologically plausible motor control hypotheses and compared the resulting simulation behaviors to measurable human motion data. While such plausible control models were able to simulate and explain many basic locomotion behaviors (e.g. walking, running, and climbing stairs), modeling higher layer controls (e.g. processing environment cues,...
Building controllers for legged robots with agility and intelligence has been one of the typical cha...
Humans are capable of performing awe-inspiring feats of agility by drawing from a vast repertoire of...
The skilled motions of humans and animals are the result of learning good solutions to difficult sen...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...
The neural control of human locomotion is not fully understood. As current experimental techniques p...
A gait model capable of generating human-like walking behavior at both the kinematic and the muscula...
Recent advancements in reinforcement learning algorithms have accelerated the development of control...
Kidziński Ł, Mohanty SP, Ong C, et al. Learning to Run challenge solutions: Adapting reinforcement l...
IntroductionRecent advancements in reinforcement learning algorithms have accelerated the developmen...
IntroductionRecent advancements in reinforcement learning algorithms have accelerated the developmen...
While physics-based models for passive phenomena such as cloth and fluids have been widely adopted i...
The human nervous system is a complex neural network that is capable of learning a wide variety of c...
Every day motor behavior consists of a plethora of challenging motor skills from discrete movements ...
Reinforcement learning (RL) provide a potentially powerful framework for designing control strategie...
We seek to develop computational tools to reproduce the locomotion of humans and animals in complex ...
Building controllers for legged robots with agility and intelligence has been one of the typical cha...
Humans are capable of performing awe-inspiring feats of agility by drawing from a vast repertoire of...
The skilled motions of humans and animals are the result of learning good solutions to difficult sen...
This thesis studies the broad problem of learning robust control policies for difficult physics-base...
The neural control of human locomotion is not fully understood. As current experimental techniques p...
A gait model capable of generating human-like walking behavior at both the kinematic and the muscula...
Recent advancements in reinforcement learning algorithms have accelerated the development of control...
Kidziński Ł, Mohanty SP, Ong C, et al. Learning to Run challenge solutions: Adapting reinforcement l...
IntroductionRecent advancements in reinforcement learning algorithms have accelerated the developmen...
IntroductionRecent advancements in reinforcement learning algorithms have accelerated the developmen...
While physics-based models for passive phenomena such as cloth and fluids have been widely adopted i...
The human nervous system is a complex neural network that is capable of learning a wide variety of c...
Every day motor behavior consists of a plethora of challenging motor skills from discrete movements ...
Reinforcement learning (RL) provide a potentially powerful framework for designing control strategie...
We seek to develop computational tools to reproduce the locomotion of humans and animals in complex ...
Building controllers for legged robots with agility and intelligence has been one of the typical cha...
Humans are capable of performing awe-inspiring feats of agility by drawing from a vast repertoire of...
The skilled motions of humans and animals are the result of learning good solutions to difficult sen...